Large Language Models in Retail CRM Systems: A Technical Evaluation of Improving Customer Support, Engagement, and Sales Strategies

Authors

  • Priya Ranjan Parida Universal Music Group, USA Author
  • Srinivasan Ramalingam Highbrow Technology Inc, USA Author
  • Jegatheeswari Perumalsamy Athene Annuity and Life company Author

Keywords:

large language models, retail CRM systems

Abstract

Large Language Models (LLMs) have recently emerged as transformative tools in the retail industry, particularly in enhancing the capabilities of Customer Relationship Management (CRM) systems. This paper provides a rigorous technical evaluation of the deployment of LLMs in retail CRM systems, examining how these models can optimize customer support, deepen customer engagement, and drive innovative sales strategies. Retail CRM systems are traditionally designed to facilitate efficient customer data management, enable responsive support, and improve customer retention. However, with the integration of LLMs, these systems can now transcend basic operational functions, leveraging advanced natural language processing (NLP) capabilities to automate and personalize interactions at scale. This study explores the architectural and functional modifications required to incorporate LLMs into existing CRM frameworks, focusing on model training, fine-tuning, and deployment strategies suitable for retail contexts. Special attention is given to evaluating the trade-offs in selecting and implementing LLMs of various scales, such as the accuracy and responsiveness of smaller, task-specific models versus the expansive contextual understanding of larger, general-purpose models.

The paper highlights several key applications of LLMs in retail CRM, beginning with their role in automating customer support processes. By integrating LLMs with CRM platforms, retailers can streamline the handling of customer inquiries through automated chatbots and virtual assistants capable of resolving a wide array of customer issues with minimal human intervention. These models exhibit the capacity for contextual understanding, sentiment analysis, and natural language generation, which enables CRM systems to provide relevant, real-time responses to customer queries. Moreover, the deployment of LLMs facilitates multilingual support, enhancing the accessibility and reach of retail CRM systems in global markets. This capability is particularly advantageous for large retail enterprises operating across diverse geographical regions, as it ensures a seamless and consistent customer experience regardless of language barriers. Beyond customer support, the integration of LLMs in retail CRM systems plays a pivotal role in fostering customer engagement. Through sentiment analysis and personalized content generation, LLMs enable CRM platforms to deliver targeted recommendations and promotional content based on individual customer preferences and behavior patterns. These personalization techniques not only enhance customer satisfaction but also contribute to increased customer loyalty and brand affinity by creating a more individualized customer experience.

Furthermore, the adoption of LLMs in retail CRM systems has significant implications for sales strategies, particularly in the areas of lead scoring, product recommendations, and cross-selling. LLMs can analyze vast amounts of customer data, identifying purchase patterns and predicting customer needs, which allows CRM systems to generate strategic insights for sales teams. For instance, by integrating historical purchase data with real-time behavioral analytics, LLMs can assist sales agents in identifying high-value leads and optimizing outreach efforts. Additionally, the ability of LLMs to produce high-quality, personalized product descriptions and marketing copy has proven effective in increasing conversion rates and driving revenue. These contributions underscore the transformative impact of LLMs on sales operations within retail CRM, positioning these models as essential tools for data-driven decision-making and automated sales processes. In addition to application-specific evaluations, this paper addresses the technical challenges and considerations associated with LLM integration in CRM systems, including data privacy, model interpretability, and computational efficiency. Given the sensitive nature of customer data, the paper discusses best practices for ensuring data privacy and compliance with regulatory standards such as GDPR. It also considers the interpretability limitations of LLMs, which can hinder transparency in customer interactions, and examines recent advancements in model explainability to mitigate these concerns. Moreover, the computational demands of deploying LLMs are examined, with a focus on optimizing model performance to ensure responsiveness and scalability in high-demand retail environments.

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Published

07-07-2024

How to Cite

[1]
Priya Ranjan Parida, Srinivasan Ramalingam, and Jegatheeswari Perumalsamy, “Large Language Models in Retail CRM Systems: A Technical Evaluation of Improving Customer Support, Engagement, and Sales Strategies”, J. of Artificial Int. Research and App., vol. 4, no. 2, pp. 85–130, Jul. 2024, Accessed: Dec. 26, 2024. [Online]. Available: https://aimlstudies.co.uk/index.php/jaira/article/view/302

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